Reinforcement learning is an area of machine learning and computer science concerned with how to select an action in a state that maximizes a numerical reward in a particular environment.

learn more… | top users | synonyms

0
votes
1answer
83 views

AI Player is not performing well? why?

I am trying to implement an agent which uses Q-learning to play Ludo. I've trained it with an e-greedy action selector, with an epsilon of 0.1, and a learning rate of 0.6, and discount factor of 0.8. ...
1
vote
1answer
32 views

Action selection with softmax?

I know this might be a pretty stupid question to ask, but what the hell.. I at the moment trying to implement soft max action selector, which uses the boltzmann distribution. Formula What I am ...
0
votes
1answer
13 views

Difference between Value iteration and Policy iteration | Reinforced learning | MDP

In reinforced machine learning, what is the difference between Policy Iteration and Value iteration. As much as i understand, in value iteration you use the Bellman equation to solve for the optimal ...
0
votes
1answer
20 views

What is action and reward in a neural network which learns weights by reinforcement learning

My goal is to predict customer churn. I want to use reinforcement learning to train a recurrent neural network which predicts a target response for its input. I understand that the state is ...
0
votes
2answers
36 views

Simulation and visualization libraries for reinforcement learning in python?

I am aware of keras, block n a few others Python libraries for nn which do RL among others. But is there a library than can make the task of visualizations easy? In terms of 3D model of ...
2
votes
2answers
25 views

Why do we weight recent rewards higher in non-stationary reinforcement learning?

The book 'Introduction to Reinforcement Learning' by Barto and Sutton, mentions the following about non-stationary RL problems - "we often encounter reinforcement learning problems that are ...
0
votes
1answer
35 views

Function Approximation: How is tile coding different from highly discretized state space?

I'm transitioning from discretization of a continuous state space to function approximation. My action and state space(3D) are both continuous. My problem suffers majorly from errors due to aliasing ...
-2
votes
0answers
50 views

Reinforcement Learning | Q-Learning

I am working on Reinforcement Learning for one of the real time problem. I just want to understand the MDPtoolbox package in detail in R. Especially Understanding the inputs and outputs from ...
0
votes
1answer
29 views

Continuous-time finite-horizon MDP

Is there any algorithm for solving a finite-horizon semi-Markov-Decision-Process? I want to find the optimal policy for a sequential decision problem with a finite action space, a finite state space, ...
2
votes
1answer
20 views

Gradient Temporal Difference Lambda without Function Approximation

In every formalism of GTD(λ) seems to define it in terms of function approximation, using θ and some weight vector w. I understand that the need for gradient methods widely came from their ...
3
votes
1answer
58 views

Grid World representation for a neural network

I'm trying to come up with a better representation for the state of a 2-d grid world for a Q-learning algorithm which utilizes a neural network for the Q-function. In the tutorial, Q-learning with ...
2
votes
1answer
54 views

Is this a correct implementation of Q-Learning for Checkers?

I am trying to understand Q-Learning, My current algorithm operates as follows: 1. A lookup table is maintained that maps a state to information about its immediate reward and utility for each ...
1
vote
1answer
56 views

Reinforcement Learning - How does an Agent know which action to pick?

I'm trying to understand Q-Learning The basic update formula: Q(st, at) += a[rt+1, + d.max(Q(st+1, a)) - Q(st,at)] I understand the formula, and what it does, but my question is: How does the ...
1
vote
1answer
30 views

Adding constraints in Q-learning and assigning rewards if constraints are violated

I took an RL course recently and I am writing a Q-learning controller for a power management application where I have continuous states and discrete actions. I am using a neural network (Q-network) ...
0
votes
0answers
101 views

Tensorflow and Multiprocessing: Passing Sessions

I have recently been working on a project that uses a neural network for virtual robot control. I used tensorflow to code it up and it runs smoothly. So far, I used sequential simulations to evaluate ...
0
votes
2answers
43 views

Reinforcement Learning: The dilemma of choosing discretization steps and performance metrics for continuous action and continuous state space

I am trying to write an adaptive controller for a control system, namely a power management system using Q-learning. I recently implemented a toy RL problem for the cart-pole system and worked out the ...
0
votes
1answer
48 views

How to calculate gradients for a neural network with theano when using Q-Learning

I am trying to use a standard fully-connected neural net as the basis for action values in Q-Learning. I am using http://deeplearning.net/tutorial/mlp.html#mlp as a reference specifically this line: ...
0
votes
2answers
214 views

Q Learning coefficients overflow

I've been using the blackbox challenge (www.blackboxchallenge.com) to try and learn some reinforcement learning. I've created a task and an environment for the challenge and I'm using PyBrain to ...
0
votes
1answer
53 views

Q-learning with linear function approximation

I would like to get some helpful instructions about how to use the Q-learning algorithm with function approximation. For the basic Q-learning algorithm I have found examples and I think I did ...
0
votes
0answers
34 views

How do I apply Q-learning to a physical system?

We are two french mechanical engineering students interested in reinforcement learning trying to apply Q-learning to a rotary inverted pendulum for a project. We have watched David Silver's "youtube ...
3
votes
1answer
80 views

Getting an ANN to learn to recognise an advantageous state in a game of draughts?

As homework for university, we were given the task of creating a simple AI that could play a game of draughts using a minimax algorithm with alpha-beta pruning. What other techniques we used were up ...
2
votes
2answers
138 views

TD learning vs Q learning

In a perfect information environment, where we are able to know the state after an action, like playing chess, is there any reason to use Q learning not TD (temporal difference) learning? As far as I ...
1
vote
1answer
40 views

How to find the optimal linear basis functions of an MDP?

Given a set of basis functions, there are many papers on finding a weight vector to linearly approximate the value function. Is there any paper on how to find the basis functions? Is it possible to ...
1
vote
1answer
59 views

Normalizing samples to 0 mean and 1 variance , in online machine learning algorithms

I am currently working on an online machine learning algorithm, where I need to make sure each feature in the input vector has a 0 mean and 1 variance across the samples. I think its trivial how to do ...
1
vote
1answer
72 views

Temporal Difference Learning and Back-propagation

I have read this page of standford - https://web.stanford.edu/group/pdplab/pdphandbook/handbookch10.html. I am not able to understand how TD learning is used in neural networks. I am trying to make a ...
0
votes
0answers
20 views

Reinforcement learning in Netlogo: Error: No urn specified

I'm totally new to NetLogo, and am trying to create an agent-based reinforcement learning (RL) model. I have recreated a toy model to get help on. Here, one agent is doing RL by interacting with two ...
2
votes
1answer
138 views

Tensorflow implementation of loss of Q-network with slicing

I'm implementing a Q-network as described in Human-level control through deep reinforcement learning (Mnih et al. 2015) in TensorFlow. To approximate the Q-function they use a neural network. The ...
-2
votes
1answer
70 views

How can one use neural networks for vehicle seeking targets? [closed]

I am very new to neural networks. I have done some reading and implemented a perceptron following the example in this book. The result can be viewed on aronadler.com/neural-net. It's a simple ...
1
vote
0answers
155 views

How to teach neural network a policy for a board game using reinforcement learning?

I need to use reinforcement learning to teach a neural net a policy for a board game. I chose Q-learining as the specific alghoritm. I'd like a neural net to have the following structure: layer - ...
6
votes
3answers
276 views

How do neural networks use genetic algorithms and backpropagation to play games?

I came across this interesting video on YouTube on genetic algorithms. As you can see in the video, the bots learn to fight. Now, I have been studying neural networks for a while and I wanted to ...
6
votes
1answer
907 views

How to use Tensorflow Optimizer without recomputing activations in reinforcement learning program that returns control after each iteration?

EDIT(1/3/16): corresponding github issue I'm using Tensorflow (Python interface) to implement a q-learning agent with function approximation trained using stochastic gradient-descent. At each ...
5
votes
2answers
428 views

Python Neural Network Reinforcement Learning [closed]

I want to make a Neural Network that is trained using reinforcement learning in python. X -> [ANN] -> yEstimate -> score! -> (repeat until weights are optimised) I'm using Scikit-learn ...
6
votes
1answer
120 views

Markov Model descision process in Java

I'm writing an assisted learning algorithm in Java. I've run into a mathematical problem that I can probably solve, but because the processing will be heavy I need an optimum solution. That being ...
2
votes
1answer
179 views

Deep Neural Network combined with qlearning

I'm using joint positions from a Kinect camera as my state space but I think it's going to be too large (25 joints x 30 per second) to just feed into SARSA or Qlearning. Right now I'm using the ...
1
vote
0answers
49 views

Utilities of states in Reinforcement Learning

In Artificial Intelligence A Modern Approach (3rd Edition-Russell) book, we have a 4*3 world like this : and with some computation that i didn't understand we reach to this utilities for each ...
2
votes
1answer
286 views

Q learning vs Temporal Difference vs Model based reinforced learning

I'm in a course called 'Intelligent Machines' in the university. We were introduced with 3 methods of reinforced learning, and with those we were given the intuition of when to use them and i quote: ...
2
votes
1answer
253 views

PyBrains Q-Learning maze example. State values and the global policy

I am trying out the PyBrains maze example my setup is: envmatrix = [[...]] env = Maze(envmatrix, (1, 8)) task = MDPMazeTask(env) table = ActionValueTable(states_nr, actions_nr) table.initialize(0.) ...
0
votes
1answer
13 views

confusion about apprenticeship learning algorithm step

I've been following the paper here http://ai.stanford.edu/~ang/papers/icml04-apprentice.pdf but cannot figure out what operation the division symbol in section 3.1 indicates. All of the mu vectors are ...
-1
votes
1answer
62 views

Q Learning Techniuqe for not falling in fires

Please take a look at picture below : My Objective is that the agent rotating and moving in the environment and not falling in fire holes, I have think like this : Do for 1000 episodes: An Episode ...
0
votes
1answer
63 views

Using a neural network with genetic algorithm for pong or supermario

I'm trying to use GA to train an ANN whose job is to move a bar vertically so that it makes a ball bounce without hitting the wall behind the bar, in other words, a single bar pong. I'm going to ask ...
0
votes
0answers
34 views

Feature generations and output for Q learning with linear function approximation

I am trying to implement an Q learning algorithm from this paper http://www.research.ibm.com/people/z/zadrozny/kdd2002-Reinf.pdf. It is about marketing campaign maximization and has temporal features ...
1
vote
0answers
25 views

Choosing the active features for function approx with radial basis functions in reinforcement learning?

I don't understand how eligibility traces fit in with reinforcement learning when using radial basis functions (RBFs) to approximate the value function with continuous state variables. In particular, ...
2
votes
2answers
144 views

Learning rate of a Q learning agent

The question how the learning rate influences the convergence rate and convergence itself. If the learning rate is constant, will Q function converge to the optimal on or learning rate should ...
1
vote
1answer
163 views

Q-Learning vs. SARSA with Greedy select

The difference between Q-Learning and SARSA is that Q-Learning compares the current state vs. the best possible next state where as SARSA compares the current state vs. the actual next state. If a ...
2
votes
1answer
109 views

Difference between batch q learning and growing batch q learning

I am confused about the difference between batch and growing batch q learning. Also, if I only have historical data, can I implement growing batch q learning? Thank you!
2
votes
1answer
129 views

Board encoding in Tesauro's TD-Gammon

Currently I am trying to get Tesauro's TD gammon to working. However I am a bit confused about how the board is encoded for input into the neural network. I understand that he used 4 units per point ...
0
votes
0answers
183 views

How to online train a neural network in pybrain?

I created a pacman game and trained a pacman agent using Q-learning algorithm. Now I'm trying to use it with neural networks. I'm using pybrain. For training, at any particular state, the state ...
0
votes
1answer
33 views

Qlearning and indexing of reward

my question might be easy, but I am not sure about time indexes in well known Q-learning equation. The equation: Qt+1(St, At) = Qt(St, At) + alpha * (Rt+1 + gamma * max_A(Qt(St+1, A)) - Qt(St, At)) ...
4
votes
1answer
36 views

Generalizing the Policy for Model-based reinforcement learning algorithm with large state and action spaces

I am using a model-based single agent reinforcement learning approach for autonomous flight. In this project I used a simulator to collect training data (state , action , ending state) so that a ...
1
vote
0answers
46 views

Neural network weights update without target

I am trying to create a feed forward neural network for learning to play poker. I have a lot of data for games of poker (several hundred thousand hands). The snag is that in a game of poker there is ...